Functional Continuous Uncertainty Principle
K. Mahesh Krishna

TL;DR
This paper introduces a new functional continuous uncertainty principle for Banach spaces using continuous p-Schauder frames, improving previous results and addressing an open question in the field.
Contribution
It formulates a novel functional continuous uncertainty principle for Banach spaces with continuous p-Schauder frames, enhancing prior bounds and answering an open question.
Findings
Establishes a new inequality relating measure supports and frame coefficients.
Improves the existing functional uncertainty principle by Mahesh Krishna.
Addresses an open question posed by Prof. Philip B. Stark.
Abstract
Let , be measure spaces. Let and be continuous p-Schauder frames for a Banach space . Then for every , we show that \begin{align} (1) \quad \quad \quad \quad \mu(\operatorname{supp}(\theta_f x))^\frac{1}{p} \nu(\operatorname{supp}(\theta_g x))^\frac{1}{q} \geq \frac{1}{\displaystyle\sup_{\alpha \in \Omega, \beta \in \Delta}|f_\alpha(\omega_\beta)|}, \quad \nu(\operatorname{supp}(\theta_g x))^\frac{1}{p} \mu(\operatorname{supp}(\theta_f x))^\frac{1}{q}\geq \frac{1}{\displaystyle\sup_{\alpha \in \Omega , \beta \in \Delta}|g_\beta(\tau_\alpha)|}. \end{align} where \begin{align*} &\theta_f: \mathcal{X} \ni x \mapsto \theta_fx \in \mathcal{L}^p(\Omega, \mu); \quad \theta_fx:…
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Taxonomy
TopicsAdvanced Banach Space Theory
